Master Production Planning [MPP]

SOLUTIONS DESIGNED TO SYSTEMATICALLY ESTIMATE MARKET DEMAND 

Plan orders across multi plant, multi resource / line to get a optimal production plan balancing conflicting objective function of Capacity Utilisation and OTIF (MTO) or Capacity Utilisation and Inventory Coverage / Service Levels (MTS)

Description

MPP uses Mixed Integer Linear Programming techniques to plan the demand and supply at an aggregate level. MPP does production planning at key resources on a longer time horizon and allows us to plan orders across the plants at an aggregate level to achieve objectives of Profit maximization, Capacity Utilisation, OTIF etc. to arrive at a Production plan at a day / week level. MPP considers constraints such as Lot Size, MOQ, Set Up Time Matrix, etc.

MPP on dataSAVI has two main versions; one for MTO (Made to Order) and another for MTS (Made to Stock

MPP is useful where also be used for tradeoffs like optimisation between capacity utilisation vs OTIF, high volume vs high contribution orders, Product Mix, Capacity Utilisation vs Optimal Inventory Coverage etc.

Features

Multi Plant / Multi Line Optimisation

Streamlines production activities across various plants and production lines, ensuring efficient resource allocation and minimizing costs.

Comprehensive Constraint Management

Manages diverse constraints such as

Scheduled and Unscheduled Maintenance MOQ, Lot / Batch Sizes
Material Availability (WIP, SFG, FG)

Set-Up Time Matrix Optimization

Develops optimized set-up time matrices to minimize changeover durations between production runs, enhancing equipment utilization and reducing downtime.

Configurable Objective Functions

Tailors objective functions to match specific business goals, allowing for flexible optimization and trade-off analysis such as
Set Up / Changeover Time vs OTIF,
Set Up / Changeover Time vs Inventory Coverage, Optimal Product / Order / Customer Mix

Strategic Product/Order/Customer Mix Optimization

Optimizes product, order, and customer mix to maximize profitability, considering factors like demand variability, production capabilities, and customer preferences.​

Multi-Time Period Optimization

Plans production activities across multiple time periods to ensure sustained efficiency and alignment with strategic objectives, incorporating demand forecasts and resource constraints for effective decision-making.

Some Customer Cases

On the quantitative side, we have integrated the powerful Statistical and Graphical Modelling libraries of Python. We have also connected to ML / AI libraries of WML / Google / AWS to enables the application of a variety of statistical and ML/AI techniques for different situations

Consumer Electrical Company

Enhanced visibility and transparency via S&OP suite for a consumer electrical manufacturer

sales and operations planning
Speciality Tyre Company

Implemented Demand Forecasting and Demand Aggregation for the smooth function for the manufacturing unit

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